Nunes João, Charneira Catarina, Nunes Carolina, Gouveia-Fernandes Sofia, Serpa Jacinta, Morello Judit, Antunes Alexandra M M
Centro de Química Estrutural, Instituto Superior Técnico, Universidade de Lisboa, Lisbon, Portugal.
CEDOC, Chronic Diseases Research Centre, Faculdade de Ciências Médicas, NOVA Medical School, Universidade NOVA de Lisboa, Lisbon, Portugal.
Front Chem. 2019 Jul 31;7:532. doi: 10.3389/fchem.2019.00532. eCollection 2019.
Identification of protein covalent modifications (adducts) is a challenging task mainly due to the lack of data processing approaches for adductomics studies. Despite the huge technological advances in mass spectrometry (MS) instrumentation and bioinformatics tools for proteomics studies, these methodologies have very limited success on the identification of low abundant protein adducts. Herein we report a novel strategy inspired on the metabolomics workflows for the identification of covalently-modified peptides that consists on LC-MS data preprocessing followed by statistical analysis. The usefulness of this strategy was evaluated using experimental LC-MS data of histones isolated from HepG2 and THLE2 cells exposed to the chemical carcinogen glycidamide. LC-MS data was preprocessed using the open-source software MZmine and potential adducts were selected based on the increments corresponding to glycidamide incorporation. Then, statistical analysis was applied to reveal the potential adducts as those ions are differently present in cells exposed and not exposed to glycidamide. The results were compared with the ones obtained upon the standard proteomics methodology, which relies on producing comprehensive MS/MS data by data dependent acquisition and analysis with proteomics data search engines. Our novel strategy was able to differentiate HepG2 and THLE2 and to identify adducts that were not detected by the standard methodology of adductomics. Thus, this metabolomics driven approach in adductomics will not only open new opportunities for the identification of protein epigenetic modifications, but also adducts formed by endogenous and exogenous exposure to chemical agents.
蛋白质共价修饰(加合物)的鉴定是一项具有挑战性的任务,主要原因是缺乏用于加合物组学研究的数据处理方法。尽管在蛋白质组学研究的质谱(MS)仪器和生物信息学工具方面取得了巨大的技术进步,但这些方法在鉴定低丰度蛋白质加合物方面的成功率非常有限。在此,我们报告了一种受代谢组学工作流程启发的新策略,用于鉴定共价修饰的肽段,该策略包括液相色谱-质谱(LC-MS)数据预处理,然后进行统计分析。使用从暴露于化学致癌物缩水甘油酰胺的HepG2和THLE2细胞中分离的组蛋白的实验LC-MS数据评估了该策略的有效性。使用开源软件MZmine对LC-MS数据进行预处理,并根据与缩水甘油酰胺掺入相对应的增量选择潜在的加合物。然后,应用统计分析来揭示潜在的加合物,因为这些离子在暴露于和未暴露于缩水甘油酰胺的细胞中存在差异。将结果与通过标准蛋白质组学方法获得的结果进行比较,标准蛋白质组学方法依赖于通过数据依赖采集产生全面的MS/MS数据,并使用蛋白质组学数据搜索引擎进行分析。我们的新策略能够区分HepG2和THLE2,并鉴定出标准加合物组学方法未检测到的加合物。因此,这种代谢组学驱动的加合物组学方法不仅将为蛋白质表观遗传修饰的鉴定带来新机会,还将为内源性和外源性化学物质暴露形成的加合物带来新机会。